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Deep Neural Networks for Image-Based Dietary Assessment
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Retinal image quality assessment using deep learning.

Gabriel Tozatto Zago1, Rodrigo Varejão Andreão2, Bernadette Dorizzi3

  • 1Department of Control and Automation Engineering, Instituto Federal do Espírito Santo, Brazil.

Computers in Biology and Medicine
|October 20, 2018
PubMed
Summary
This summary is machine-generated.

This study introduces an automatic system using a fine-tuned convolutional neural network (CNN) to assess retinal image quality instantly. The CNN accurately evaluates fundus photography, improving diagnostic efficiency and patient convenience.

Keywords:
Convolutional neural networksDeep learningDiabetic retinopathyImage qualityRetinal images

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Area of Science:

  • Ophthalmology
  • Medical Imaging
  • Artificial Intelligence

Background:

  • Poor-quality retinal images hinder accurate medical diagnosis.
  • Retaking fundus photography exams is inconvenient for patients.
  • Automated quality assessment can assist healthcare professionals during image acquisition.

Purpose of the Study:

  • To propose a robust automatic system for assessing retinal image quality at the point of acquisition.
  • To aid healthcare professionals in ensuring high-quality fundus photography.
  • To develop a reliable tool for real-time image quality evaluation.

Main Methods:

  • A convolutional neural network (CNN) was pretrained on non-medical images for feature extraction.
  • The CNN underwent fine-tuning with a small dataset of labeled retinal images.
  • Performance was validated on DRIMDB and ELSA-Brasil databases using cross-validation.

Main Results:

  • The CNN achieved an Area Under the Curve (AUC) of 99.98% on the DRIMDB database.
  • The CNN achieved an AUC of 98.56% on the ELSA-Brasil database in inter-database testing.
  • The model demonstrated robustness across different image acquisition scenarios.

Conclusions:

  • The proposed CNN-based system effectively assesses retinal image quality in real-time.
  • The system's robustness makes it suitable for clinical deployment.
  • This technology can enhance diagnostic accuracy and streamline ophthalmic examinations.